DocumentCode
382174
Title
Robust image classification based on a non-causal hidden Markov Gauss mixture model
Author
Pyun, Kyungsuk ; Chee Sun Won ; Johan Lim ; Gray, Robert M.
Author_Institution
Inf. Syst. Lab., Stanford Univ., CA, USA
Volume
3
fYear
2002
fDate
24-28 June 2002
Firstpage
785
Abstract
We propose a novel image classification method using a non-causal hidden Markov Gauss mixture model (HMGMM) We apply supervised learning assuming that the observation probability distribution given each class can be estimated using Gauss mixture vector quantization (GMVQ) designed using the generalized Lloyd algorithm with a minimum discrimination information (MDI) distortion. The maximum a posteriori (MAP) hidden states in an Ising model are estimated by a stochastic EM algorithm. We demonstrate that HMGMM obtains better classification than several popular methods, including CART, LVQ, causal HMM, and multiresolution HMM, in terms of Bayes risk and the spatial homogeneity of the classified objects. A heuristic solution for the number of clusters achieves a robust image classification.
Keywords
Gaussian processes; hidden Markov models; image classification; learning (artificial intelligence); maximum likelihood estimation; optimisation; parameter estimation; probability; vector quantisation; Bayes risk; Gauss mixture vector quantization; Gaussian mixture model; Ising model; MAP hidden states; expectation maximization algorithm; generalized Lloyd algorithm; heuristic solution; hidden Markov model; image classification; maximum a posteriori hidden states; minimum discrimination information distortion; noncausal model; stochastic algorithm; supervised learning; Algorithm design and analysis; Gaussian distribution; Gaussian processes; Hidden Markov models; Image classification; Probability distribution; Robustness; State estimation; Supervised learning; Vector quantization;
fLanguage
English
Publisher
ieee
Conference_Titel
Image Processing. 2002. Proceedings. 2002 International Conference on
ISSN
1522-4880
Print_ISBN
0-7803-7622-6
Type
conf
DOI
10.1109/ICIP.2002.1039089
Filename
1039089
Link To Document